281

I can't get the average or mean of a column in pandas. A have a dataframe. Neither of things I tried below gives me the average of the column weight

>>> allDF 
         ID           birthyear  weight
0        619040       1962       0.1231231
1        600161       1963       0.981742
2      25602033       1963       1.3123124     
3        624870       1987       0.94212

The following returns several values, not one:

allDF[['weight']].mean(axis=1)

So does this:

allDF.groupby('weight').mean()
2
  • 1
    df.groupby('weight') wasn't what you wanted, because it split the df into separate columns, each with a distinct value of weight. Instead of just df['weight'].mean()
    – smci
    Feb 16, 2018 at 8:41
  • allDF. weight.mean()
    – DataFramed
    Jun 12, 2020 at 12:07

12 Answers 12

426

If you only want the mean of the weight column, select the column (which is a Series) and call .mean():

In [479]: df
Out[479]: 
         ID  birthyear    weight
0    619040       1962  0.123123
1    600161       1963  0.981742
2  25602033       1963  1.312312
3    624870       1987  0.942120

In [480]: df.loc[:, 'weight'].mean()
Out[480]: 0.83982437500000007
3
  • 6
    and what if I wanted to get a mean of each and every column?
    – Chris
    Jun 11, 2018 at 14:55
  • 6
    @Chris df.describe() Aug 1, 2018 at 17:20
  • 5
    @Chris df.mean() gives you the weight of each column and returns it in a series.
    – emschorsch
    Feb 22, 2019 at 0:41
43

Try df.mean(axis=0) , axis=0 argument calculates the column wise mean of the dataframe so the result will be axis=1 is row wise mean so you are getting multiple values.

1
  • This works for most columns, but it will ignore any datetime columns.
    – user74696c
    Jul 19, 2021 at 7:16
23

Do try to give print (df.describe()) a shot. I hope it will be very helpful to get an overall description of your dataframe.

1
  • 5
    display(df.describe()) is better (in Jupyter Notebooks) because display from ipython provides formatted HTML rather than ASCII, which is more visually useful/pleasing. Apr 5, 2019 at 16:28
17

Mean for each column in df :

    A   B   C
0   5   3   8
1   5   3   9
2   8   4   9

df.mean()

A    6.000000
B    3.333333
C    8.666667
dtype: float64

and if you want average of all columns:

df.stack().mean()
6.0
15

you can use

df.describe() 

you will get basic statistics of the dataframe and to get mean of specific column you can use

df["columnname"].mean()
1
  • 3
    This is a duplicate of the answers mentioned above. Dec 12, 2018 at 14:29
10

You can also access a column using the dot notation (also called attribute access) and then calculate its mean:

df.your_column_name.mean()
3
6

You can use either of the two statements below:

numpy.mean(df['col_name'])
# or
df['col_name'].mean()
1
  • Please, enrich your answer with proper comments. Otherwise it is likely to be marked for deletion
    – Don
    Nov 26, 2019 at 11:14
4

Do note that it needs to be in the numeric data type in the first place.

 import pandas as pd
 df['column'] = pd.to_numeric(df['column'], errors='coerce')

Next find the mean on one column or for all numeric columns using describe().

df['column'].mean()
df.describe()

Example of result from describe:

          column 
count    62.000000 
mean     84.678548 
std     216.694615 
min      13.100000 
25%      27.012500 
50%      41.220000 
75%      70.817500 
max    1666.860000
1
  • Take df.loc[:, 'your_column_name'] whenever you can. Jan 6 at 3:30
3

Additionally if you want to get the round value after finding the mean.

#Create a DataFrame
df1 = {
    'Subject':['semester1','semester2','semester3','semester4','semester1',
               'semester2','semester3'],
   'Score':[62.73,47.76,55.61,74.67,31.55,77.31,85.47]}
df1 = pd.DataFrame(df1,columns=['Subject','Score'])

rounded_mean = round(df1['Score'].mean()) # specified nothing as decimal place
print(rounded_mean) # 62

rounded_mean_decimal_0 = round(df1['Score'].mean(), 0) # specified decimal place as 0
print(rounded_mean_decimal_0) # 62.0

rounded_mean_decimal_1 = round(df1['Score'].mean(), 1) # specified decimal place as 1
print(rounded_mean_decimal_1) # 62.2
3

You can use the method agg (aggregate):

df.agg('mean')

It's possible to apply multiple statistics:

df.agg(['mean', 'max', 'min'])
2

You can simply go for: df.describe() that will provide you with all the relevant details you need, but to find the min, max or average value of a particular column (say 'weights' in your case), use:

    df['weights'].mean(): For average value
    df['weights'].max(): For maximum value
    df['weights'].min(): For minimum value
-2

You can easily follow the following code

import pandas as pd 
import numpy as np 
        
classxii = {'Name':['Karan','Ishan','Aditya','Anant','Ronit'],
            'Subject':['Accounts','Economics','Accounts','Economics','Accounts'],
            'Score':[87,64,58,74,87],
            'Grade':['A1','B2','C1','B1','A2']}

df = pd.DataFrame(classxii,index = ['a','b','c','d','e'],columns=['Name','Subject','Score','Grade'])
print(df)

#use the below for mean if you already have a dataframe
print('mean of score is:')
print(df[['Score']].mean())

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